基于投影和遮挡比的移动物体行为推理与跟踪

Hong Lu, S. Fei, Zhang Tao, Tao Li, Jianyong Zheng
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引用次数: 1

摘要

目标状态估计和数据关联是多目标跟踪的主要方面。在复杂的情况下,一个对象经常与其他对象组合在一起,或者被其他对象或背景遮挡,这会增加数据关联和行为推理的难度,甚至导致难以保持跟踪。针对这些问题,提出了一种新的行为推理和跟踪方法。首先建立了模拟公共交通环境的场景模型。然后利用卡尔曼滤波估计目标位置和边界框;然后,定义并结合基于中心关联的投影比和基于区域关联的遮挡比对目标行为进行推理和分类;最后,提出了一种针对特殊行为(如合并和静态遮挡)的自适应跟踪方案来验证我们的推理方法。实验结果表明,该方法是有效的。
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Behaviour Reasoning and Tracking for Mobile Objects Based on Projection and Occlusion Ratios
Object states estimation and data association are main facets of multi-object tracking. Under complex situations, one object often grouped with others, or occluded by other objects or background, which can increase the difficulty in data association and behaviour reasoning, and even result in being hard to maintain track. To cope with these problems, a new behaviour reasoning and tracking method is proposed. A scene mode is built firstly simulating public transport environment. Then, Kalman filter is used to estimate the object position and bounding box. Then, the center-association based projection ratio and region-association based occlusion ratio are defined and combined to reason and classify object behaviours. Finally, an adaptive tracking scheme aiming at special behaviours (e.g. merging, and static occlusion) is proposed to validate our reasoning method. Experimental results show that the proposed method is efficient.
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